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首页> 外文期刊>IEEE systems journal >Multi-Agent-Based CBR Recommender System for Intelligent Energy Management in Buildings
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Multi-Agent-Based CBR Recommender System for Intelligent Energy Management in Buildings

机译:基于多Agent的CBR建筑物智能能源推荐系统

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This paper proposes a novel case-based reasoning (CBR) recommender system for intelligent energy management in buildings. The proposed approach recommends the amount of energy reduction that should be applied in a building in each moment, by learning from previous similar cases. The k-nearest neighbor clustering algorithm is applied to identify the most similar past cases, and an approach based on support vector machines is used to optimize the weight of different parameters that characterize each case. An expert system composed by a set of ad hoc rules guarantees that the solution is adequate and applicable to the new case scenario. The proposed CBR methodology is modeled through a dedicated software agent, thus enabling its integration in a multi-agent systems society for the study of energy systems. Results show that the proposed approach is able to provide suitable recommendations on energy reduction, by comparing its results with a previous approach based on particle swarm optimization and with the real reduction in past cases. The applicability of the proposed approach in real scenarios is also assessed through the application of the results provided by the proposed approach on a house energy resources management system.
机译:本文提出了一种新颖的基于案例的推理(CBR)推荐器系统,用于建筑物中的智能能源管理。通过从以前的类似案例中学习,建议的方法建议应在每时每刻在建筑物中应用的节能量。应用k最近邻聚类算法来识别最相似的过去案例,并使用基于支持向量机的方法来优化表征每种案例的不同参数的权重。由一组临时规则组成的专家系统可确保该解决方案足够适用于新案例。拟议的CBR方法论通过专用的软件代理进行建模,从而使其能够集成到用于研究能源系统的多代理系统协会中。结果表明,通过将其结果与基于粒子群优化的先前方法以及过去案例中的实际减少量进行比较,所提出的方法能够为减少能耗提供合适的建议。通过将所提出的方法提供的结果应用于房屋能源管理系统,还可以评估所提出的方法在实际场景中的适用性。

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